February 2025
Intermediate to advanced
504 pages
16h 6m
English
Part 3 is your guide to the know-how and practical insights needed to apply deep learning to tabular data problems. As a stand-alone solution or integrated with gradient boosting, deep learning can get good results with tabular data when you know how to use its unique way of finding solutions to predictive tasks.
Chapter 8 explores various deep learning stacks and frameworks for working with tabular data, including low-level frameworks like TensorFlow and PyTorch and high-level APIs like fastai and Lightning Flash. It introduces several libraries specifically designed for tabular deep learning tasks, such as TabNet, PyTorch Tabular, SAINT, and DeepTables. We compare the different stacks and discuss each ...
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